Clustering on uncertain data, one of the essential tasks in mining uncertain data, posts significant challenges on both modeling similarity between uncertain objects and developing efficient computational methods. The previous methods extend traditional partitioning clustering methods like k-means and density-based clustering methods like DBSCAN to uncertain data, thus rely on geometric distances between objects. Such methods cannot handle uncertain objects that are geometrically indistinguishable, such as products with the same mean but very different variances in customer ratings. Surprisingly, probability distributions, which are essential characteristics of uncertain objects, have not been considered in measuring similarity between unce...
Uncertain data has been rapidly accumulated in many important applications, such as sensor networks,...
Uncertain objects arise in many applications such as sensor networks, moving object databases and me...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...
Clustering on uncertain data, one of the essential tasks in mining uncertain data, posts significant...
Clustering is an unsupervised classification technique for grouping set of abstract objects into cla...
Clustering is an important task in the Data Mining. Clustering on uncertain data is a challenging in...
In recent years, uncertain data clustering has become the subject of active research in many fields,...
In recent years, uncertain data clustering has become the subject of active research in many fields,...
Clustering is the process of making the group of abstract objects into classes of similar objects. A...
Clustering is the process of making the group of abstract objects into classes of similar objects. A...
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
Density-based techniques seem promising for handling datauncertainty in uncertain data clustering. N...
Clustering uncertain data has emerged as a challenging task in uncertain data management and mining....
Ben-Israel and Iyigun ([1] and [2]) presents a new clustering method which is probabilistic distance...
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
Uncertain data has been rapidly accumulated in many important applications, such as sensor networks,...
Uncertain objects arise in many applications such as sensor networks, moving object databases and me...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...
Clustering on uncertain data, one of the essential tasks in mining uncertain data, posts significant...
Clustering is an unsupervised classification technique for grouping set of abstract objects into cla...
Clustering is an important task in the Data Mining. Clustering on uncertain data is a challenging in...
In recent years, uncertain data clustering has become the subject of active research in many fields,...
In recent years, uncertain data clustering has become the subject of active research in many fields,...
Clustering is the process of making the group of abstract objects into classes of similar objects. A...
Clustering is the process of making the group of abstract objects into classes of similar objects. A...
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
Density-based techniques seem promising for handling datauncertainty in uncertain data clustering. N...
Clustering uncertain data has emerged as a challenging task in uncertain data management and mining....
Ben-Israel and Iyigun ([1] and [2]) presents a new clustering method which is probabilistic distance...
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
Uncertain data has been rapidly accumulated in many important applications, such as sensor networks,...
Uncertain objects arise in many applications such as sensor networks, moving object databases and me...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...